基于模型推理的生产系统被动测试

William Durand, S. Salva
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引用次数: 5

摘要

本文处理测试生产系统的问题,即在工业环境中运行的系统,并且分布在多个设备和传感器上。通常,这样的系统缺乏模型,或者用不是最新的模型来表示。没有任何模型,测试过程通常是手工完成的,并且往往是一项繁重而乏味的任务。本文通过提出一个名为Autofunk的框架来解决这个问题,该框架结合了模型推理、专家系统和机器学习等不同领域。这个框架是与我们的工业合作伙伴米其林合作设计的,它推断出可以用作执行离线被动测试的规范的正式模型。给定大量的生产消息集,它推断出精确的模型,这些模型只捕获正在分析的系统的功能行为。此后,推断的模型被被动测试人员用作输入,被动测试人员检查被测系统是否符合这些模型。由于推断的模型不能表达所有可能发生的行为,我们用两个实现关系定义一致性。我们在实际生产系统中对我们的框架进行了评估,并表明它可以在实践中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Passive testing of production systems based on model inference
This paper tackles the problem of testing production systems, i.e. systems that run in industrial environments, and that are distributed over several devices and sensors. Usually, such systems lack of models, or are expressed with models that are not up to date. Without any model, the testing process is often done by hand, and tends to be an heavy and tedious task. This paper contributes to this issue by proposing a framework called Autofunk, which combines different fields such as model inference, expert systems, and machine learning. This framework, designed with the collaboration of our industrial partner Michelin, infers formal models that can be used as specifications to perform offline passive testing. Given a large set of production messages, it infers exact models that only capture the functional behaviours of a system under analysis. Thereafter, inferred models are used as input by a passive tester, which checks whether a system under test conforms to these models. Since inferred models do not express all the possible behaviours that should happen, we define conformance with two implementation relations. We evaluate our framework on real production systems and show that it can be used in practice.
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